Cutible MCP Server

Cutible MCP Server

Enables AI agents to perform headless video editing through 35 tools for project creation, clip manipulation, rendering, quality control, and semantic search, all via JSON-RPC 2.0 over stdio.

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README

Cutible — Agent-Native Montage Engine

CI License: MIT Python 3.10+

A headless video-editing engine whose primary operator is an AI agent, not a human with a mouse. The agent reads the project as data, calls editing verbs, renders deterministically, and inspects the result through a QC loop — then iterates.

Architecture

              AGENT-REVISOR (LLM: planning, reasoning, decisions)
                    │
        ┌───────────┼───────────┐
        │ HANDS     │ EYES      │ MEMORY
        ▼           ▼           ▼
   Verb API    Perception    Semantic Media
   (14 low +   Loop          Index
   8 high)     (VLM+QC)     (scenes+transcript+VLM+embeddings)
        │           │           │
        └─────┬─────┘           │
              ▼                 │
     Timeline-as-Data ◄────────┘
     (JSON, diffable, auditable)
              │
              ▼
     ┌─────────────────────┐
     │ Deterministic Render │  ← FFmpeg (Contour A)
     │ Remotion (Contour B) │  ← Motion graphics
     │ Render Farm          │  ← Distributed GPU
     └─────────────────────┘
              │
              ▼
         QC Gate (deterministic + VLM)
              │
              ▼
     Final Video / OTIO → DaVinci/Premiere

What's Implemented

Plan concept Module Status
§4 Timeline-as-Data cutible/schema.py ✅ pydantic, 3 zooms, content hash
§3.1 Low-level verbs (14) cutible/verbs.py ✅ diffs, checkpoint/undo/branch
§3.1 High-level verbs (8) cutible/verbs_high.py ✅ remove_silences, reframe, beat-sync, captions, ducking, assemble, make_short
§5 Ingest Pipeline cutible/ingest/ ✅ scenes, Whisper, VLM, audio analysis, embeddings
§5 Semantic Media Index cutible/index/ ✅ models, store, text/time/speaker/B-roll search
§3.2 Perception Loop cutible/perception/ ✅ VLM review + proxy render
§7 Multi-agent Swarm cutible/agents/ ✅ Planner, Editor, Sound, QC, Orchestrator
§6.1 Contour A (FFmpeg) cutible/compiler.py ✅ deterministic render
§6.1 Contour B (Remotion) cutible/remotion/ ✅ TSX generation, config
§9 OTIO Bridge cutible/otio_bridge/ ✅ export/import to DaVinci/Premiere
§6.2 Distributed Render Farm cutible/render_farm/ ✅ scheduler, workers, assembly
§8.1 MCP Server cutible/mcp_server.py ✅ 35 tools, JSON-RPC 2.0/stdio
§8.2 REST API cutible/api/ ✅ FastAPI, full CRUD
§8.3 Python SDK cutible/sdk/ ✅ in-process + HTTP client
§8.4 CLI cutible/cli.py ✅ render/probe/view/qc/ingest/search/agent/export/import/farm
§12.3 Tests tests/ ✅ 30+ tests

Quick Start

pip install -e .                    # core
pip install -e ".[api]"             # + REST API (FastAPI/uvicorn)
pip install -e ".[whisper]"         # + Whisper transcription
pip install -e ".[all]"             # everything

# Generate synthetic assets
bash examples/make_assets.sh

# Watch the agent assemble a recap
python examples/agent_recap_demo.py

CLI

# Render
python -m cutible render project.json -o out.mp4 --qc

# Ingest a video into the semantic index
python -m cutible ingest speaker /path/to/speaker.mp4

# Search the index
python -m cutible search "moment where speaker discusses AI"

# Run the multi-agent swarm
python -m cutible agent "make a 60s recap about AI" --duration 60

# Export/Import OTIO
python -m cutible export project.json --otio output.otio
python -m cutible import output.otio --save imported.json

# Distributed render farm
python -m cutible farm project.json -o out.mp4 --workers 4

# Start REST API
python -m cutible serve-api --port 8000

Python SDK

from cutible.sdk import CutibleClient

# In-process mode
client = CutibleClient()
client.create_project("demo", fps=30, width=1920, height=1080)
client.add_asset("speaker", "video", uri="speaker.mp4", duration=60)
client.add_track("v_main", "video")
client.add_clip("v_main", "speaker", src_in=0, src_out=10)
result = client.render("output.mp4")

# Run the agent swarm
result = client.run_agent("make a 30s recap", target_duration=30)

REST API

# Start server
python -m cutible serve-api

# Create project
curl -X POST http://localhost:8000/projects \
  -H "Content-Type: application/json" \
  -d '{"id": "demo", "fps": 30}'

# Add clip
curl -X POST http://localhost:8000/projects/demo/verbs \
  -H "Content-Type: application/json" \
  -d '{"verb": "add_clip", "args": {"track_id": "v1", "asset": "a", "src_out": 5}}'

# Render
curl -X POST http://localhost:8000/projects/demo/render \
  -H "Content-Type: application/json" \
  -d '{"output": "out.mp4", "run_qc": true}'

MCP Server (primary agent interface)

python -m cutible.mcp_server   # speaks JSON-RPC 2.0 over stdio

35 tools exposed including: create_project, add_clip, trim, split, ripple_delete, add_transition, add_text_layer, render, qc, ingest_asset, search_index, remove_silences, reframe_to, sync_cuts_to_beat, generate_captions, auto_ducking, make_short, vlm_review, render_proxy, run_agent_swarm, export_otio, import_otio, render_farm.

Project Layout

cutible/
  schema.py           Timeline-as-Data models + zoom views + content hash
  verbs.py            Editor: low-level verbs (14 primitives)
  verbs_high.py       High-level composite verbs (8 intentions)
  compiler.py         Timeline → FFmpeg filtergraph → mp4
  qc.py               Deterministic QC (duration / black frames / LUFS)
  cli.py              Headless CLI (12 commands)
  mcp_server.py       MCP stdio server (35 tools)
  ingest/
    pipeline.py       Ingest orchestrator
    scenes.py         Scene/shot detection (ffmpeg)
    audio_transcribe.py  Whisper transcription + diarization
    vlm.py            VLM visual analysis (Gemini/OpenAI)
    audio_analysis.py  Beat/silence/tempo detection (librosa/ffmpeg)
    embeddings.py     Embedding generation (CLIP/OpenAI)
  index/
    models.py         Semantic index data models
    store.py          Index persistence
    search.py         Text/time/speaker/B-roll search
  perception/
    vlm_review.py     VLM semantic review of renders
    proxy_render.py   Fast low-res proxy renderer
  agents/
    base.py           Base agent + message types
    planner.py        Director/Planner agent
    editor.py         Editor/Montageur agent
    sound.py          Sound Engineer agent
    qc_agent.py       QC/Reviewer agent
    orchestrator.py   Multi-agent swarm coordinator
  remotion/
    compiler.py       Timeline → Remotion (React) project
  otio_bridge/
    exporter.py       Cutible → OpenTimelineIO
    importer.py       OpenTimelineIO → Cutible
  render_farm/
    worker.py         Segment render worker
    scheduler.py      Task scheduler
    manager.py        Distributed render farm manager
  api/
    app.py            FastAPI REST application
  sdk/
    client.py         Python SDK client (in-process + HTTP)
tests/
  test_core.py        Original 15 tests
  test_new_modules.py 20+ tests for new modules
examples/
  agent_recap_demo.py End-to-end agent demo
  make_assets.sh      Synthetic asset generator

Design Principles (Agent-Native)

  1. State is data, not pixels. The agent reads/diffs/mutates a JSON timeline.
  2. Verbs return diffs. Each call reports what changed.
  3. Errors teach. Structured errors with hint and context.
  4. Try / inspect / revert. Checkpoint/undo/branch for exploration.
  5. Deterministic render. Same project → identical frames.
  6. Closed perception loop. QC gate + VLM review → self-correction.
  7. Semantic memory. Ingest → indexed content the agent can search.
  8. Multi-agent swarm. Specialized roles: plan → edit → sound → QC → iterate.
  9. Industry bridge. OTIO export → DaVinci/Premiere for human finishing.

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